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Related Questions
- Can biased sampling methods in data collection lead to underrepresentation of minority classes in negative examples?
- How do stratified sampling methods address the issue of biased sampling in negative examples?
- What are the consequences of biased sampling on the performance of machine learning models, particularly for minority classes?
- Can you explain the concept of class imbalance and its relation to biased sampling in negative examples?
- How do different sampling techniques, such as oversampling and undersampling, impact the representation of minority classes in negative examples?
- What role does biased sampling play in perpetuating social biases in machine learning models?
- Can you discuss the relationship between biased sampling and the fairness of machine learning models, particularly in high-stakes applications like AI-powered decision-making systems?
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